This study was aimed at investigating the ultrasound based on deep learning algorithm to evaluate the rehabilitation effect of transumbilical laparoscopic single-site total hysterectomy on pelvic floor function in patients. The bilinear convolutional neural network (BCNN) structure was constructed in the ultrasound imaging system. The spatial transformer network (STN) was used to preserve image information. Two algorithms, BCNN-R and BCNN-S, were proposed to remove sensitive information after ultrasonic image processing, and then, subtle features of the image were identified and classified. 80 patients undergoing transumbilical laparoscopic single-site total hysterectomy in hospital were randomly divided into a control group and a treatment group, with 40 cases in each group. In the control group, conventional ultrasound was used to assess the image of pelvic floor function in patients undergoing laparoendoscopic single-site surgery (LESS); in the observation group, ultrasound based on deep learning algorithm was used. The postoperative incision pain score, average postoperative anus exhaust time, average hospital stay, and postoperative satisfaction of the two groups were evaluated, respectively. The highest accuracy of constructed network BCNN-S was 88.98%; the highest recall rate of BCNN-R was 88.51%; the highest accuracy rate of BCNN-R was 97.34%. The operation time, intraoperative blood loss, and exhaust time were similar between the two groups, and the difference had no statistical significance ( > 0.05). The numerical rating scale (NRS) scores were compared, the observation group had less pain, the difference between the two groups had statistical significance ( < 0.05), and the postoperative recovery was good. The BCNN based on deep learning can realize the imaging of the uterus by ultrasound and realize the evaluation of pelvic floor function, and the probability of pelvic floor dysfunction is small, which is worthy of clinical promotion.
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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9385360 | PMC |
http://dx.doi.org/10.1155/2022/1116332 | DOI Listing |
Tohoku J Exp Med
January 2025
Department of Anesthesiology and Surgery, The Second Hospital, Lanzhou University.
Ginekol Pol
January 2025
VM Medical Park Maltepe Hospital, Istanbul, Türkiye.
Objectives: To investigate the outcomes of central cystocele and rectocele repair using natural tissue layers. To describe a novel technique (Dogan technique).
Material And Methods: This is a retrospective cohort study.
Med Sci Sports Exerc
November 2024
AFIPE Research Group. Faculty of Physical Activity and Sports Science, Universidad Politécnica de Madrid, SPAIN.
Purpose: This study aimed to evaluate the impact of a supervised exercise program, including Pelvic Floor Muscle Training (PFMT), throughout pregnancy on Urinary Incontinence (UI).
Methods: A randomized clinical trial (NCT04563065) was conducted. Initially, 600 pregnant women were screened for eligibility, with data from 356 participants eventually analyzed.
Int Urogynecol J
January 2025
Westmead Hospital, Pelvic Floor Unit, Wentworthville, PO Box 533, Sydney, NSW, 2145, Australia.
Urogynecology (Phila)
January 2025
From the Division of Urogynecology and Reconstructive Pelvic Surgery, Department of Obstetrics and Gynecology, University of Iowa Hospitals and Clinics, Iowa City, IA.
Importance: The Pelvic Organ Prolapse Quantification (POP-Q) stages do not correlate with symptoms or characterize important prolapse subtypes.
Objectives: We hypothesize that clinically meaningful prolapse "phenotypes" utilizing POP-Q measurements can be defined. The primary aim was to define the phenotypes and their frequency.
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